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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >COMBINING VELOCITY AND LOCATION-SPECIFIC SPATIAL CLUES IN TRAJECTORIES FOR COUNTING CROWDED MOVING OBJECTS
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COMBINING VELOCITY AND LOCATION-SPECIFIC SPATIAL CLUES IN TRAJECTORIES FOR COUNTING CROWDED MOVING OBJECTS

机译:在轨迹中结合速度和位置特定的空间线索来计算拥挤的移动物体

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摘要

Trajectory-clustering-based methods have shown a good performance in counting moving objects in densely crowded scenes. However, they still fall into trouble in complex scenes, such as with the close proximity of moving objects, freely moving parts of objects, and different object size in different locations of the scene. This paper proposes a new method combining velocity and location-specific spatial clues in trajectories to deal with these problems. We first extract the velocities of a trajectory over its life-time. To alleviate confusion around the boundary regions between close objects, extracted velocity information is utilized to eliminate unreal-world feature points on objects' boundaries. Then, a function is introduced to measure the similarity of the trajectories integrating both of the spatial and the velocity clues. This function is employed in the Mean-Shift clustering procedure to reduce the effect of freely moving parts of the objects. To address the problem of various object sizes in different regions of the scene, we suggest a technique to learn the location-specific size distribution of objects in different locations of a scene. The experimental results show that our proposed method achieves a good performance. Compared with other trajectory-clustering-based methods, it decreases the counting error rate by about 10%.
机译:基于轨迹聚类的方法在计算密集人群场景中的运动物体时已显示出良好的性能。但是,它们仍然在复杂的场景中陷入麻烦,例如由于移动的对象非常接近,对象的自由移动部分以及场景的不同位置中的不同对象大小。本文提出了一种结合轨迹速度和位置特定空间线索的新方法来解决这些问题。我们首先提取轨迹在整个生命周期中的速度。为了减轻附近物体之间边界区域的混乱,提取的速度信息用于消除物体边界上的虚幻特征点。然后,引入一个函数来测量整合了空间和速度线索的轨迹的相似性。在均值漂移聚类过程中采用了此功能,以减少对象的自由移动部分的影响。为了解决场景不同区域中各种对象大小的问题,我们建议一种技术来学习场景不同位置中对象的特定于位置的大小分布。实验结果表明,该方法具有良好的性能。与其他基于轨迹聚类的方法相比,它可将计数错误率降低约10%。

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